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Evaluation of spectral similarity indices in unsupervised change detection approaches

机译:无监督变化检测方法中光谱相似性指标的评估

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Unsupervised change detection (UCD) is a subject of Remote Sensing whose objective is to detect the differences between two multi-temporal images. In some cases, spectral similarity indices have been used as the comparison block in algorithms of UCD. The aim of this paper is to show in a quantitative way the performance of four spectral similarity indices in the correct identification of changes. Comparison is performed in terms of precision (overall accuracy and kappa index) over medium and high-resolution images (SPOT-5: Satellite Pour l'Observation de la Terre and Quickbird), with a reference obtained through a post-classification method (based on Support Vector Machines, SVM). The results show dependence on the automatic thresholding technique, as well as on the classes associated with the change.
机译:无监督变更检测(UCD)是遥感的主题,其目的是检测两个多时间图像之间的差异。在某些情况下,光谱相似性指标已用作UCD算法中的比较块。本文的目的是定量地显示四个光谱相似性指数在正确识别变化中的性能。在中分辨率和高分辨率图像(SPOT-5:德拉普尔卫星观测站和Quickbird)的精度(总体精度和kappa指数)方面进行比较,并通过后分类方法(基于在支持向量机(SVM)上。结果显示依赖于自动阈值技术以及与更改相关的类。

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